2022
DOI: 10.3390/e24101500
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Deep Matrix Factorization Based on Convolutional Neural Networks for Image Inpainting

Abstract: In this work, we formulate the image in-painting as a matrix completion problem. Traditional matrix completion methods are generally based on linear models, assuming that the matrix is low rank. When the original matrix is large scale and the observed elements are few, they will easily lead to over-fitting and their performance will also decrease significantly. Recently, researchers have tried to apply deep learning and nonlinear techniques to solve matrix completion. However, most of the existing deep learnin… Show more

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